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A new security approach for public transport application against tag cloning with neural network-based pattern recognition

机译:基于基于神经网络的模式识别的公共交通应用防标签克隆的新安全方法

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摘要

RFID tags are widely used in situations where their counterfeiting or cloning can bring financial rewards. Cloning is a particular problem because it gets round the sophisticated security measures. This paper describes a neural network-based technique for identifying cloned tickets for a public transport system. It is based on modeling passenger behavior. Cardholders' behavioral characteristics in using public transport are modeled with seven neural network model equations, one for each day of the week, and stored in an RFID card. At the time of use, these model equations or characteristics are employed to predict whether the user is the real owner of the card. Therefore, even if the RFID card is cloned, the cloned card cannot be used because a passenger's behavioral characteristics when using public transport are individual and unique, such as the passenger's signature or style of speech. Therefore, the proposed approach provides high security, especially for low-cost RFID tags.
机译:RFID标签广泛用于假冒或伪造可带来经济利益的情况。克隆是一个特殊的问题,因为它绕过了复杂的安全措施。本文介绍了一种基于神经网络的技术,用于识别公共交通系统的克隆票证。它基于对乘客行为的建模。使用七个神经网络模型方程对持卡人在使用公共交通时的行为特征进行建模,其中一个方程式用于一周中的每一天,并存储在RFID卡中。在使用时,这些模型方程式或特性可用于预测用户是否是卡的真实所有者。因此,即使克隆了RFID卡,也无法使用克隆的卡,因为乘客在使用公共交通工具时的行为特征是独特且独特的,例如乘客的签名或言语风格。因此,所提出的方法提供了很高的安全性,尤其是对于低成本的RFID标签。

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